Design of Manufacturing Systems Based on Digital Shadow and Robust Engineering
Abstract
:1. Introduction
- Enhanced Process Optimization: The statistical technique of DOE can be employed to identify critical factors that affect a particular process, enabling companies to optimize production. By using Digital Shadow technology, real-time data can be collected from production processes to pinpoint the most significant factors affecting efficiency, quality, and safety. This combination enables companies to continuously optimize production processes and to lower production costs.
- Improved Quality Control: With Digital Shadow technology, companies can monitor production processes in real-time, gather data from sensors and devices, and ensure that quality parameters are met. By using DOE techniques, companies can identify critical factors affecting product quality and adjust them to improve quality consistency. The combination of DOE and Digital Shadow technology ensures that products are consistently produced with high quality and meet or exceed customer expectations.
- Increased Efficiency: Digital Shadow technology allows for the collection of industrial big data sets in real-time, giving production managers insights into how to optimize production processes. By using DOE techniques, companies can identify the most significant factors affecting production efficiency, such as machine speed, temperature, or pressure. By optimizing these factors, companies can reduce cycle times, increase production throughput and improve efficiency.
- Reduced Downtime: By integrating Digital Shadow technology, companies can monitor production processes in real-time and promptly identify potential issues that may cause downtime. By using DOE techniques, companies can identify critical factors affecting machine reliability, such as machine speed or maintenance schedules. As a next step, by optimizing these factors, companies can reduce machine downtime, leading to increased productivity and decreased maintenance costs.
- Improved Cost Management: Digital Shadow technology can provide companies with real-time data on production costs, such as energy usage, raw material costs and labor costs. As a result, by using DOE techniques, companies can identify the most significant factors that impact production costs and make adjustments to lower costs. Finally, by optimizing production processes and reducing waste, companies can save money on production costs, leading to improved profitability.
2. State of the Art
3. Proposed Digital Shadow Model
4. Proposed Methodology Description
Mathematical Formulation of the Problem
- → number of factors
- → number of levels per factor
- → number of trials
- → model response for experiment iteration
5. Industrial Case Study Implementation
5.1. Manufacturing System Description
5.2. Digital Model
5.3. Design of Experiments Based on Taguchi Method
- Definition of the experiment objectives, including the response variable and the potential influencing factors.
- Selection of the appropriate experimental design (e.g., Full Factorial, Fractional Factorial, Response Surface) based on the number of factors, their levels, and the available resources.
- Generation of the experimental design. This action generated a randomized plan of the experiments to be performed.
- Execution of the experiments according to the plan and data collection regarding the response variable and the factor levels.
- Data analysis using ANOVA.
- Data interpretation, in order to identify the most influential factors and the optimal conditions for the production process.
6. Results and Discussion
6.1. Analysis of Experimental Data Based on Taguchi Approach
6.2. Proposed Solutions
- Product A/Quantity 4 (ton/h): (8160 (pcs/h) − 4080 (pcs/h)) × 0.20 €) ≃ 820 (€/h) or in a week: 98,400 (€/week);
- Product A/Quantity 6 (ton/h): (12,240 (pcs/h) − 4080 (pcs/h)) × 0.20 (€) ≃ 1600 (€/h) or in a week: 192,000 (€/week);
- Product A/Quantity 8 (ton/h): (16,320 (pcs/h) − 4080 (pcs/h)) × 0.20 (€) ≃ 2400 (€/h) or in a week: 288,000 (€/week).
7. Concluding Remarks and Outlook
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Cluster 1 | Cluster 2 | Cluster 3 |
---|---|---|
Digital Twin | Assembly line balancing | Bolted assemblies |
“as built” design | Conceptual data model | Cloud computing |
Design for zero-defect manufacturing | Cyber-physical model | Edge computing |
Intelligent manufacturing | Data Analytics | Fuzzy logic |
Mesh monitoring | Digital Shadow | Load balancing |
Quality control | Digital supply chain | Multi responses |
ZDM mapping | Industry 4.0 | Response time |
Life-cycle control | Mixed-model stochastic | Smart tightening |
Smart Manufacturing | Procurement 4.0 | Taguchi |
Criteria | Digital Model | Digital Shadow | Digital Twin |
---|---|---|---|
Efficiency | Identification of inefficiencies and bottlenecks virtually for process optimization | Near real-time data monitoring and analysis to identify inefficiencies and bottlenecks | Uses sensors and data analytics to create a real-time, virtual replica of a physical production system, enabling bi-directional communication |
Quality Control | Identification of potential quality issues before implementation | Near real-time monitoring and analysis of product quality parameters | Bi-Directional near real-time monitoring of product quality, enabling process adjustments for improving quality |
Safety | Offline identification of safety hazards before implementation | Near real-time monitoring of safety protocols & alerts for any deviations | Near real-time monitoring of safety protocols & provision of safety countermeasures |
Real-time Data Analysis | Offline support for decision-making | Near real-time data analysis for decision-making support | Uses real-time data to provide continuous insights for decision-making and enable predictive maintenance to reduce downtime |
Cost Savings | Simulation models can help identify cost-saving opportunities in a virtual environment before implementation | Optimized production processes and improved quality control can reduce costs | Enables optimized production processes, improved quality control, and predictive maintenance to reduce costs and increase efficiency |
Reference | Key Contributions | Challenges—Limitations |
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[26] |
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[28] |
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[29] |
| Requires specialized expertise for
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[34] |
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[35] |
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[36] |
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[37] |
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[38] |
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Reference | Contribution | Main Topics Covered | Applications and Benefits |
---|---|---|---|
[24] | Presents a framework for the design, modeling, and implementation of Digital Twins, and discusses their potential applications and benefits. | Design and modeling of Digital Twins.—Applications of Digital Twins in various industries, including manufacturing, healthcare, and transportation.—Benefits of using Digital Twins, such as reducing development time and cost, improving system performance, and enabling predictive maintenance. | Various industries, including manufacturing, healthcare, and transportation. Reducing development time and cost. Improving system performance. Enabling predictive maintenance. |
[29] | Presents a conceptual framework of Digital Shadow that allow for a holistic data view on production planning and control | Design and modeling of Digital Shadow—Digital Shadow for production process and control in the injection molding | Manufacturing system (injection molding). Minimizing rejection rates in injection molding. Decisions can be made simultaneously |
[47] | Provides a framework for designing a production system based on Digital Model technology and different simulation scenarios are evaluated using DOE | Design of manufacturing systems using Digital Model technology—Different simulation scenarios based on the DOE are studied towards the optimization of the production | Manufacturing systems (copper tube production line). Low cost, quick analysis, low risk. Improving system performance. |
[51] | Provides an overview of the historical evolution of manufacturing systems and discusses the major trends and challenges in the field. | Historical evolution of manufacturing systems, from craft production to modern cyber-physical systems.—Major trends and challenges in the field.—Insights into the future of manufacturing, including the integration of new technologies and the need for sustainability. | Manufacturing systems. Integration of new technologies. Need for sustainability. |
Current Manuscript | Presents a method for designing manufacturing systems based on Digital Shadow technology and robust engineering principles. | Design of manufacturing systems using Digital Shadow technology.—Implementation of robust engineering principles.—Advantages of using Digital Shadow technology and robust engineering in manufacturing systems design. | Manufacturing systems (food industry). Improving system resilience and robustness. Reducing manufacturing costs. Improving system performance. |
Signal-to-Noise Ratio (SNR) | Goal of the Experiment | Data Characteristics | Signal-to-Noise Ratio Formulas |
---|---|---|---|
Larger is Better | Maximize the response | Positive | |
Smaller is Better | Minimize the response | Non-negative with a target value of zero | |
Nominal is Best | Target the response and you want to base the signal-to-noise ratio on standard deviations only | Positive, zero, or negative | |
Nominal is Best (default) | Target the response and you want to base the signal-to-noise ratio on means and standard deviations | Non-negative with an “absolute zero” in which the standard deviation is zero when the mean is zero | s: variation |
1 | 2 | |
---|---|---|
A (m/min) | 100 | 300 |
B (pcs/min) | 68 | 272 |
C (-) | 1 | 2 |
2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 | 10 | 11 | 12 | 13 | … | 31 | ||
Number of Levels (p) | 2 | L4 | L4 | L8 | L8 | L8 | L12 | L12 | L12 | L12 | L12 | L16 | L12 | … | L32 |
3 | L9 | L9 | L9 | L18 | L18 | L18 | L18 | L27 | L27 | L27 | L27 | L27 | … | ||
4 | L16 | L16 | L16 | L16 | L16 | L32 | L32 | L32 | L32 | … | |||||
5 | L25 | L25 | L25 | L25 | L25 | L25 | L50 | L50 | L50 | L50 | L50 | … |
Experiments | Conveyors Velocity (A) | Machines’ Productivity (B) | Operator Number (C) |
---|---|---|---|
1 | 1 | 1 | 1 |
2 | 1 | 2 | 2 |
3 | 2 | 1 | 2 |
4 | 2 | 2 | 1 |
Key Performance Indicator | Description |
---|---|
KPI_1 | Production Rate (quantity) of products |
KPI_2 | Filling Machines’ Productivity |
Simulation Time = 480 (min)—Bottle Capacity = 490 (g) | ||||
---|---|---|---|---|
Product | KPI_1: Quantity (ton/h) | KPI_2: Productivity (Bottles/h) | ||
Theoretical Value | Experimental Value | Theoretical Value | Experimental Value | |
Product A | 2 | 2 | 300 | 68 |
Experiments | Conveyors Velocity (A) | Machines’ Productivity (B) | Operator Number (C) | |
---|---|---|---|---|
1 | 100 | 68 | 1 | 32,624 |
2 | 100 | 272 | 2 | 47,719 |
3 | 300 | 68 | 2 | 32,640 |
4 | 300 | 272 | 1 | 130,442 |
Experiments | Conveyors Velocity (A) | Machines’ Productivity (B) | Operator Number (C) | SN Ratio |
---|---|---|---|---|
1 | 100 | 68 | 1 | 90 |
2 | 100 | 300 | 2 | 94 |
3 | 300 | 68 | 2 | 90 |
4 | 300 | 300 | 1 | 102 |
Larger Is Better | Conveyors Velocity (A) | Machines’ Productivity (B) | Operator Number (C) |
---|---|---|---|
1 | 91.924 | 90.270 | 96.290 |
2 | 96.290 | 97.940 | 91.922 |
Rank | 2 | 1 | 3 |
Source | Degrees of Freedom | SS | MS | Contribution Percentage |
---|---|---|---|---|
Conveyors Velocity (A) | 1 | 1,711,435,530 | 1,711,435,530 | 25.90% |
Machines’ Productivity (B) | 1 | 3,186,433,152 | 3,186,433,152 | 48.20% |
Operator Number (C) | 1 | 1,710,111,962 | 1,710,111,962 | 25.88% |
Error | 0 | 0 | ||
Sum | 3 | 6,607,980,645 |
Simulation Time = 480 (min)/Bottle Capacity = 490 (g)/Product A | ||||
---|---|---|---|---|
A/A | KPI_1: Quantity (ton/h) | KPI_2: Productivity (Bottles/min) | ||
Theoretical Value | Experimental Value | Theoretical Value | Experimental Value | |
1 | 2 | 2 | 300 | 68 |
2 | 4 | 4 | 136 | |
3 | 6 | 6 | 204 | |
4 | 8 | 8 | 272 |
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Mourtzis, D.; Balkamos, N. Design of Manufacturing Systems Based on Digital Shadow and Robust Engineering. Appl. Sci. 2023, 13, 5184. https://doi.org/10.3390/app13085184
Mourtzis D, Balkamos N. Design of Manufacturing Systems Based on Digital Shadow and Robust Engineering. Applied Sciences. 2023; 13(8):5184. https://doi.org/10.3390/app13085184
Chicago/Turabian StyleMourtzis, Dimitris, and Nikos Balkamos. 2023. "Design of Manufacturing Systems Based on Digital Shadow and Robust Engineering" Applied Sciences 13, no. 8: 5184. https://doi.org/10.3390/app13085184
APA StyleMourtzis, D., & Balkamos, N. (2023). Design of Manufacturing Systems Based on Digital Shadow and Robust Engineering. Applied Sciences, 13(8), 5184. https://doi.org/10.3390/app13085184